EXP_NAME = "FEMNIST"

IMG_DIM = (28, 28)
NUM_FEATURES = 28 * 28
NUM_CLASSES = 62
NUM_TRAIN_DATA = 35948
NUM_TEST_DATA = 4090
NUM_USERS = 193

NUM_CLIENTS = 10
NUM_LOCAL_UPDATES = 5
CLIENT_BATCH_SIZE = 20
INIT_LR = 0.25

ADJ_INTERVAL = 50
EVAL_DISP_INTERVAL = 10

IP_MAX_ROUNDS = 1000
IP_ADJ_INTERVAL = ADJ_INTERVAL
IP_DATA_BATCH = 10
IP_THR = 0.1

# Conv2
DENSE_TIME = 2.2486449218005875  # 10 times
SPARSE_ALL_TIME = 2.898095353249955  # all params are in, but sparse form
SPARSE_TIME = 1.2492789765
COMP_COEFFICIENTS_SINGLE = [0., 7.098850e-6, 1.927325e-7, 1.782308e-7]
COMP_COEFFICIENTS = [coeff * NUM_LOCAL_UPDATES for coeff in COMP_COEFFICIENTS_SINGLE]
COMM_COEFFICIENT = 5.561621025626998e-06
C_COMP = SPARSE_TIME * NUM_LOCAL_UPDATES
C_COMM = 0.
TIME_CONSTANT = C_COMP + C_COMM

TO_SPARSE_THR = 0.9

MAX_INC_DIFF = None
MAX_DEC_DIFF = 0.3

ADJ_THR_FACTOR = 1.5
ADJ_THR_ACC = ADJ_THR_FACTOR / NUM_CLASSES
ADJ_HALF_LIFE = 10000

MAX_ROUND = 10001

# Iterative pruning config
NUM_ITERATIVE_PRUNING = 20

# Online algorithm config
MAX_NUM_UPLOAD = 5
